Method for Solving LASSO Problem Based on Multidimensional Weight

Chunrong Chen, S. Chen, Chen Lin, Yuchen Zhu
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引用次数: 5

Abstract

In the data mining, the analysis of high-dimensional data is a critical but thorny research topic. The LASSO (least absolute shrinkage and selection operator) algorithm avoids the limitations, which generally employ stepwise regression with information criteria to choose the optimal model, existing in traditional methods. The improved-LARS (Least Angle Regression) algorithm solves the LASSO effectively. This paper presents an improved-LARS algorithm, which is constructed on the basis of multidimensional weight and intends to solve the problems in LASSO. Specifically, in order to distinguish the impact of each variable in the regression, we have separately introduced part of principal component analysis (Part_PCA), Independent Weight evaluation, and CRITIC, into our proposal. We have explored that these methods supported by our proposal change the regression track by weighted every individual, to optimize the approach direction, as well as the approach variable selection. As a consequence, our proposed algorithm can yield better results in the promise direction. Furthermore, we have illustrated the excellent property of LARS algorithm based on multidimensional weight by the Pima Indians Diabetes. The experiment results show an attractive performance improvement resulting from the proposed method, compared with the improved-LARS, when they are subjected to the same threshold value.
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基于多维权值的LASSO问题求解方法
在数据挖掘中,高维数据的分析是一个关键而棘手的研究课题。LASSO (least absolute contraction and selection operator,最小绝对收缩和选择算子)算法避免了传统方法一般采用带信息准则的逐步回归来选择最优模型的局限性。改进的最小角度回归(lars)算法有效地解决了LASSO问题。本文提出了一种基于多维权值的改进lars算法,旨在解决LASSO算法中存在的问题。具体来说,为了区分回归中每个变量的影响,我们在提案中分别引入了部分主成分分析(Part_PCA)、独立权重评估和CRITIC。我们探索了这些方法通过对每个个体进行加权来改变回归轨迹,以优化逼近方向,以及逼近变量的选择。因此,我们提出的算法在承诺方向上可以产生更好的结果。此外,我们还以皮马印第安人糖尿病为例说明了基于多维权值的LARS算法的优异性能。实验结果表明,在阈值相同的情况下,与改进后的lars相比,该方法的性能有明显提高。
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